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\bibcite{RConvKernel}{{2}{2007}{{Borgwardt}}{{}}}
\bibcite{firstGNN}{{3}{2004}{{Scarselli {等}}}{{Scarselli, Tsoi, Gori, and Hagenbuchner}}}
\bibcite{GCNFourier}{{4}{2014}{{Bruna {等}}}{{Bruna, Zaremba, Szlam, and LeCun}}}
\bibcite{GDVCounting}{{5}{2014}{{Rahman {等}}}{{Rahman, Bhuiyan, and Hasan}}}
\bibcite{DD}{{6}{2003}{{Dobson {和} Doig}}{{Dobson and Doig}}}
\bibcite{MUTAG}{{7}{1991}{{Debnath {等}}}{{Debnath, Lopez~de Compadre, Debnath, Shusterman, and Hansch}}}
\bibcite{ComputationalComplexity}{{8}{2006}{{BORGWARDT {等}}}{{BORGWARDT, KRIEGEL, VISHWANATHAN, and SCHRAUDOLPH}}}
\bibcite{RepresenterTheorem}{{9}{2019}{{Wahba {和} Wang}}{{Wahba and Wang}}}
\bibcite{NCI1}{{10}{2008}{{Wale {等}}}{{Wale, Watson, and Karypis}}}
\bibcite{networkDataAnalytics}{{11}{2015}{{Rossi {和} Ahmed}}{{Rossi and Ahmed}}}
\bibcite{ChebyNet}{{12}{2016}{{Defferrard {等}}}{{Defferrard, Bresson, and Vandergheynst}}}
\bibcite{1-OrderChebyNet}{{13}{2016}{{Kipf {和} Welling}}{{Kipf and Welling}}}
\bibcite{InductiveGCN}{{14}{2017}{{Hamilton {等}}}{{Hamilton, Ying, and Leskovec}}}
\bibcite{GAT}{{15}{2018}{{Veličković {等}}}{{Veličković, Cucurull, Casanova, Romero, Liò, and Bengio}}}
\bibcite{DiffPool}{{16}{2018}{{Ying {等}}}{{Ying, You, Morris, Ren, Hamilton, and Leskovec}}}
\bibcite{GraphUNets}{{17}{2019}{{Gao {和} Ji}}{{Gao and Ji}}}
\bibcite{KernelPDProof}{{18}{2006}{{Vert}}{{}}}
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\bibcite{Ribeiro2017struc2vecLN}{{21}{2017}{{Ribeiro {等}}}{{Ribeiro, Saverese, and Figueiredo}}}
\bibcite{Adhikari2018Sub2VecFL}{{22}{2018}{{Adhikari {等}}}{{Adhikari, Zhang, Ramakrishnan, and Prakash}}}
\bibcite{LearningGNN}{{23}{2020}{{刘忠雨\ 等}}{{刘忠雨, 李彦霖, and 周洋}}}
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